THE PLATFORM

Nine AI Models.
One Unified Platform.

SenseCoreAI combines forecasting, anomaly detection, fuel poverty intelligence, compliance automation, occupancy inference, and carbon reporting — all running on your meter data, 24 hours a day.

AI Demand Forecasting🔍 Anomaly Detection🏠 Fuel Poverty Risk Score📋 Compliance Automation👥 Occupancy Inference🌍 Carbon Scope Reporting
WHY IT IS DIFFERENT

Built on Real Research. Not a Black Box.

Every AI model in SenseCoreAI is documented in peer-reviewed research with permanent DOIs. You can read exactly how each model works — and why the results are trustworthy.

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Peer-Reviewed Research
5 published papers covering every core AI model. Permanent DOIs on Zenodo. Not estimates or demos — real results from real building data.
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Production on AWS London
Not a prototype. SenseCoreAI is deployed on AWS eu-west-2 (London) with 29/29 API tests passing. Your data never leaves the UK.
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36.4M Real Records
Trained on the Building Data Genome 2 dataset — 1,112 real UK commercial buildings. The largest open energy dataset in the world.
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NHS DSP Toolkit Ready
Immutable audit logging. Seven-level role-based access control. Full DPIA available. All data in AWS eu-west-2 (London).
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Single API
Every capability — forecasting, anomaly detection, FPRS, compliance, occupancy — accessible through one authenticated API endpoint.
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SHAP Explainability
Every AI prediction comes with a SHAP explanation — showing exactly which factors drove the result. No black boxes. Full audit trail.
CAPABILITY 01

AI Demand Forecasting

"Know tomorrow's energy bill today"
What is energy forecasting?

Energy forecasting means predicting how much electricity your building will consume in the future — hour by hour, day by day. Without a forecast, you are always reacting to problems after they happen. With one, you can plan budgets, shift loads to cheaper times, and prevent overspend before it occurs.

How SenseCoreAI does it

SenseCoreAI uses a Temporal Fusion Transformer (TFT) — a state-of-the-art deep learning model trained on 36.4 million half-hourly electricity readings from 1,112 real UK commercial buildings. It produces 24-hour ahead forecasts updated every 30 minutes, achieving a forecast error of just 10.31% MAPE — verified in peer-reviewed research.

Research Verified
10.31% MAPE — verified in published research (Zenodo DOI: 10.5281/zenodo.19082882)
What You Get
24-hour ahead half-hourly forecasts
Updated every 30 minutes automatically
Trained on 36.4M real UK building records
Sub-11% forecast error — peer-reviewed
Colour-coded peak/high/normal periods
Exportable forecast data via API
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CAPABILITY 02

Anomaly Detection

"Catch meter faults before they cost you"
What is anomaly detection?

Anomaly detection means automatically identifying when a meter, building, or piece of equipment is behaving unusually — consuming far more or less energy than expected. Without it, a faulty piece of equipment or a meter error can go undetected for months, running up thousands of pounds in unnecessary costs.

How SenseCoreAI does it

SenseCoreAI runs three independent anomaly detection methods simultaneously on every meter in your estate. Z-Score analysis flags statistical outliers. Interquartile Range (IQR) detection catches skewed distributions. Isolation Forest uses machine learning to identify genuinely anomalous patterns. When two or more methods agree, an alert is raised — reducing false positives while catching real issues.

Research Verified
Three-method consensus — verified in published research (Zenodo DOI: 10.5281/zenodo.19084571)
What You Get
Z-Score, IQR, and Isolation Forest methods
Runs 24/7 across every meter automatically
Consensus alerts reduce false positives
Real-time dashboard notifications
Historical anomaly log for audit purposes
API endpoint for integration with existing systems
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CAPABILITY 03

Fuel Poverty Risk Score

"Identify vulnerable households automatically"
What is fuel poverty?

Fuel poverty occurs when a household cannot afford to heat their home to a safe, healthy temperature. It affects 3.1 million households in England — most of them in social housing. The Social Housing (Regulation) Act 2023 and Warm Homes Plan require registered providers to identify and act on fuel poverty. The problem is that most vulnerable households never self-identify.

How SenseCoreAI does it

SenseCoreAI scores every property from 0 to 100 daily using five signals extracted from meter data alone — no surveys, no home visits, no tenant interaction required. Properties scoring above the critical threshold trigger automatic welfare referral alerts. The five signals are: consumption level, temporal distribution, seasonal variation, consumption volatility, and LSTM Autoencoder reconstruction error.

Research Verified
Verified mean FPRS score: 23.8 (SD=20.0) — published research (Zenodo DOI: 10.5281/zenodo.19082050)
What You Get
Daily scoring of every property 0–100
Five independent signals from meter data
No surveys or home visits required
Automatic welfare referral alerts
Portfolio-level fuel poverty dashboard
SHDF grant evidence generation
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CAPABILITY 04

Compliance Automation

"Six obligations. Zero manual filing."
What compliance obligations does SenseCoreAI cover?

UK energy regulation places significant statutory obligations on public sector organisations. SECR (Streamlined Energy and Carbon Reporting) requires annual carbon reporting for large organisations. ESOS (Energy Savings Opportunity Scheme) requires four-yearly energy audits. ERIC is an annual NHS estates return. SHDF requires grant evidence for social housing retrofit. DSP Toolkit governs NHS data security. Each carries financial penalties for non-compliance.

How SenseCoreAI does it

SenseCoreAI generates each compliance report automatically from your meter data using the correct specification for each framework. SECR reports use current DEFRA Scope 1 and Scope 2 conversion factors. ERIC reports are mapped to NHS England's prescribed format. ESOS evidence packs include AI-generated savings analysis ready for Lead Assessor sign-off. All reports are exportable as PDF or structured data.

Research Verified
SECR Scope 2 methodology — verified in published research (Zenodo DOI: 10.5281/zenodo.19084669)
What You Get
SECR — automatic Scope 1 and 2 reporting
ESOS — evidence pack for Lead Assessor
ERIC — NHS annual submission pack
SHDF — baseline and post-retrofit evidence
DSP Toolkit — full audit log and RBAC
PDF export for every report
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CAPABILITY 05

Occupancy Inference

"Know when buildings are occupied — without sensors"
Why does occupancy matter for energy?

Knowing when a building is occupied — and when it is not — is fundamental to energy management. Heating an empty building wastes money. Failing to cool an overcrowded one wastes energy and creates risk. Traditionally, occupancy data required expensive sensor networks or manual logging. Most organisations simply do not have it.

How SenseCoreAI does it

SenseCoreAI infers occupancy patterns from electricity consumption data alone using Gaussian Mixture Models (GMM). By clustering consumption patterns over time, it identifies occupied and unoccupied periods without any physical sensors or hardware installation. The result is an occupancy profile for every building — updated continuously from existing meter data.

Research Verified
GMM occupancy inference — verified in published research (Zenodo DOI: 10.5281/zenodo.19084632)
What You Get
No sensors or hardware required
Gaussian Mixture Model clustering
Occupied/unoccupied period identification
Per-building occupancy profiles
Integration with anomaly detection
Supports ESOS audit evidence
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CAPABILITY 06

Carbon Scope Reporting

"Prove your carbon reduction with auditable evidence"
What are Scope 1 and Scope 2 emissions?

Scope 1 emissions are direct emissions from sources your organisation controls — gas boilers, on-site generators, fleet vehicles. Scope 2 emissions are indirect emissions from the electricity you purchase. Together they form the basis of SECR reporting and net zero target tracking. Most organisations calculate these manually once a year — often with errors and out-of-date conversion factors.

How SenseCoreAI does it

SenseCoreAI tracks Scope 1 and Scope 2 emissions continuously from your meter data using current DEFRA conversion factors that are updated automatically. Every reading is logged to an immutable audit table, creating a continuous carbon record that can be used for SECR filing, net zero progress reporting, and ESG disclosures. Reduction over time is tracked automatically.

Research Verified
SECR Scope 2 carbon methodology — verified in published research (Zenodo DOI: 10.5281/zenodo.19084669)
What You Get
Scope 1 and Scope 2 tracked continuously
Current DEFRA conversion factors applied automatically
Immutable audit log for every reading
SECR-ready annual carbon report
Net zero progress tracked over time
ESG disclosure data exportable via API
INTEGRATION

One API. Every Capability.

Every feature in SenseCoreAI is accessible via a single authenticated REST API. Connect your meter data once and access forecasting, anomaly detection, FPRS, compliance reports, occupancy inference, and carbon data — all from the same endpoint.

JWT AuthenticationSecure token-based authentication on every request
Seven-Level RBACRole-based access control for every user and endpoint
CSV + API IngestUpload via CSV or stream data directly via API
Swagger DocumentationFull interactive API docs available at /docs
29/29 Tests PassingProduction-ready. Every endpoint tested and verified
EXAMPLE API CALL
# Get 24-hour forecast for a building
GET /api/v1/forecast/{building_id}
 
# Response includes:
{
"forecast": [...48 half-hourly points],
"peak_period": "14:00-16:00",
"daily_total_kwh": 1847,
"anomaly_status": "clear",
"fprs_score": 23.8,
"shap_explanation": {...}
}

See the platform on your own data

30 minutes. Your own buildings. We walk through every capability live — forecasting, anomaly detection, FPRS, and compliance reports.

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